The Massive Multiple Input Multiple Output (MIMO) system is a core technology of the next generation communication. With the growing complexity of CSI, CSI feedback in massive MIMO system has become a bottleneck problem, the traditional compressive sensing based CSI feedback approaches have limited performance. Recently, numerous deep learning based CSI feedback approaches demonstrate their efficiency and potential. However, most existing methods improve accuracy at the cost of computational complexity and the accuracy decreases significantly as the CSI compression rate increases. This paper presents a novel neural network CLNet tailored for CSI feedback problem based on the intrinsic properties of CSI. The experiment result shows that CLNet outperforms the state-of-the-art method by average accuracy improvement of 5.41% in both outdoor and indoor scenarios with average 24.1% less computational overhead. Codes are available at GitHub.
翻译:大规模多重投入多重输出(MIMO)系统是下一代通信的核心技术。随着CSI的日益复杂,大型MIMO系统中的CSI反馈已成为瓶颈问题,传统的压缩遥感CSI反馈方法的绩效有限。最近,许多基于深层次学习的CSI反馈方法显示了其效率和潜力。然而,随着CSI压缩率的提高,大多数现有方法提高了计算复杂性成本的准确性,精确性也大大降低。本文介绍了一个新的神经网络CLNet,根据CSI的内在特性专门为CSI反馈问题设计的CLNet。实验结果表明,CLNet在户外情景中的平均精确度提高5.41 %, 以平均24.1% 的计算间接费用为单位。 GitHub 提供了代码。